Summary of Adaptive Friction in Deep Learning: Enhancing Optimizers with Sigmoid and Tanh Function, by Hongye Zheng et al.
Adaptive Friction in Deep Learning: Enhancing Optimizers with Sigmoid and Tanh Functionby Hongye Zheng, Bingxing…
Adaptive Friction in Deep Learning: Enhancing Optimizers with Sigmoid and Tanh Functionby Hongye Zheng, Bingxing…
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Unraveling Text Generation in LLMs: A Stochastic Differential Equation Approachby Yukun ZhangFirst submitted to arxiv…
How Susceptible are LLMs to Influence in Prompts?by Sotiris Anagnostidis, Jannis BulianFirst submitted to arxiv…
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Beyond Labels: Aligning Large Language Models with Human-like Reasoningby Muhammad Rafsan Kabir, Rafeed Mohammad Sultan,…